Hybrid Model-Based Fault Detection and Diagnosis for the Axial Flow Compressor of a Combined-Cycle Power Plant

Author:

García-Matos Jesús A.1,Sanz-Bobi Miguel A.2,Muñoz Antonio3,Sola Antonio4

Affiliation:

1. Research Assistant e-mail:

2. Professor e-mail:

3. Professor e-mail:  Institute for Research in Technology (IIT), ICAI School of Engineering, Comillas Pontifical University, Santa Cruz de Marcenado 26, 28015 Madrid, Spain

4. Direction of Technical Services, Iberdrola Generación S.A., Tomás Redondo 1, 28033 Madrid, Spain e-mail:

Abstract

This technical brief is focused on the research area of fault detection and diagnosis in a complex thermodynamical system: in this case, an axial flow compressor. Its main contribution is a new approach which combines a physical model and a multilayer perceptron (MLP) model using the best advantages of both types of modeling. Fault detection is carried out by an MLP model whose residuals against the real outputs of the system determine which observations could be considered abnormal. A physical model is used to generate different fault simulations by shifting physical parameters related to faults. After these simulations are performed, the different fault profiles obtained are collected within a fault dictionary. In order to identify and diagnose a fault, the anomalous residuals observed by the MLP model are compared with the fault profiles in the dictionary and a correlation that provides a hypothesis with respect to the causes of the fault is obtained. This methodology has been applied to axial compressor operational data obtained from a real power plant. A case study based on the successful diagnosis of compressor fouling is included in order to show the potential of the proposed method.

Publisher

ASME International

Subject

Mechanical Engineering,Energy Engineering and Power Technology,Aerospace Engineering,Fuel Technology,Nuclear Energy and Engineering

Reference13 articles.

1. Salar, A., Hosseini, S. M., Sedigh, A. K., and Zangmolk, B. R., 2010, “Improving Model-Based Gas Turbine Fault Diagnosis Using Multi-Operating Point Method,” Computer Modeling and Simulation (EMS), 2010 Fourth UKSim European Symposium, pp. 240–247.

2. Performance Model ‘Zooming’ for In-Depth Component Fault Diagnosis;ASME J. Eng. Gas Turbines Power,2011

3. Fault Detection Through Physical Modelling in an Axial Flow Compressor of a Combined-Cycle Power Plant,2011

4. Axial Flow Compressor Mean Line Design,2008

5. Syverud, E., 2007, “Axial Compressor Performance Deterioration and Recovery Through Online Washing,” Doctoral thesis, Norwegian University of Science and Technology, Faculty of Engineering Science and Technology, Trondheim, Norway.

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